US7444200B1 - Preventative maintenance scheduling incorporating facility and loop optimization - Google Patents
Preventative maintenance scheduling incorporating facility and loop optimization Download PDFInfo
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- US7444200B1 US7444200B1 US11/756,710 US75671007A US7444200B1 US 7444200 B1 US7444200 B1 US 7444200B1 US 75671007 A US75671007 A US 75671007A US 7444200 B1 US7444200 B1 US 7444200B1
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Definitions
- the present invention relates generally to manufacturing and, more particularly, to a method and apparatus for scheduling preventative maintenance activities by incorporating facility and loop optimizations.
- a semiconductor fabrication facility typically includes numerous processing tools or machines used to fabricate semiconductor devices.
- the processing machines may include photolithography steppers, etch tools, deposition tools, polishing tools, rapid thermal processing tools, ion implantation tools, and the like.
- Wafers (or wafer lots) are processed in the tools in a predetermined order and each processing tool modifies the wafers according to a particular operating recipe so that a desired product is formed in or on the wafer.
- a photolithography stepper may be used to form a patterned layer of photoresist above the wafer.
- Features in the patterned layer of photoresist correspond to a plurality of features, e.g. gate electrode structures, which will ultimately be formed above the surface of the wafer.
- the various features formed in or on the wafer, as well as features formed in or on layers that are deposited above the wafer combined to form the desired product.
- Exemplary products include processors, memory elements, and the like.
- the semiconductor fabrication facility typically also includes metrology tools for collecting data indicative of the physical state of one or more wafers before, during, and/or after processing by the processing tools.
- Data collected by the metrology tools may be used to characterize the wafer, to detect faults associated with the processing, or to determine the quality of the finished product.
- a mean critical dimension associated with the various features may be indicative of a performance level of products formed on the wafer and/or the wafer lot. If the wafer state data indicates that the mean critical dimension associated with the feature, (e.g., a gate electrode) is on the lower end of an allowable range for such feature sizes, then this may indicate that the product formed on the wafer may exhibit relatively high performance levels. For example, smaller feature sizes in a processor formed on the wafer may be associated with faster processing speeds. Higher performance products may be sold at a higher price, thereby increasing the profitability of the manufacturing operation.
- the mean critical dimension associated with the feature e.g., a gate electrode
- High-volume manufacturing environments may be used to form the different products concurrently.
- a single semiconductor fabrication facility may be used to form hundreds of different products including processors of varying processing speeds and/or architectures, memory elements of different types (e.g., EEPROM, flash memory, etc.) and/or sizes (e.g., 64 MB, 128 MB, etc), and the like.
- polishing tools include polishing pads that are periodically conditioned or replaced.
- Etch tools and deposition tools are periodically cleaned using both in situ cleans or complete disassembly cleans. Steppers are periodically calibrated to maintain alignment accuracy and exposure dose consistency. Metrology tools are also calibrated periodically.
- preventative maintenance (PM) procedures are performed at discrete intervals based on vendor recommendations, past history, and expected degradation rates of consumable items used in the tools.
- the use of fixed preventative maintenance intervals is not always an effective solution for optimizing tool and line efficiency. If the maintenance activities are performed more often than actually needed, the efficiency of the line and the operation cost of the tool is increased. If maintenance activities are performed less often than needed, product quality and tool reliability may be degraded.
- Effective preventative maintenance scheduling is important in a wafer fabrication environment to increase tool availability and decrease future unscheduled down times. These benefits are indirect benefits of the scheduling system, but cannot be easily quantified. The direct outputs of preventative maintenance procedures are productivity loss in the short term.
- mean time between preventative maintenance (MTBPM) values are determined by machine vendors.
- Scheduling systems may use a warning window based on vendor recommendations for a PM task that allows the PM to be completed at any time within the window without significantly impacting the production line.
- Fabrication technicians typically adhere strictly to warning windows when performing PM procedures. This approach may be effective when the facility is not running at full capacity and each machine family has enough capacity to handle the wafers in process (WIP) even though some machines in the family may be unavailable.
- WIP wafers in process
- production targets may be missed when the production is volume driven. For example, a fabrication facility may define a minimum number of activities to be finished each shift, day, or week. The situation is further complicated when cluster tools are used, with each chamber potentially having its own PM schedule.
- the method includes defining a set of global time periods. Members of a set of preventative maintenance tasks associated with a plurality of machines for are scheduled execution during the global time periods based on capacities of the machines and production targets for the machines. A plurality of time slots is defined for a selected global period having a selected preventative maintenance task scheduled for execution therein. A selected time slot from the plurality of time slots is scheduled for performing the selected preventative maintenance task based on work in process levels for with the associated machine over the time slots.
- the method includes defining a set of global time periods.
- a global optimization is performed to schedule members of a set of preventative maintenance tasks associated with a plurality of machines grouped into machine families for execution during the global time periods based on capacities of the machine families and production targets.
- a plurality of time slots is defined for each of the global periods having at least one of the preventative maintenance tasks scheduled for execution therein.
- a local optimization is performed to schedule selected time slots within the global time periods for performing the preventative maintenance tasks based on work in process levels for selected machine families associated with the preventative maintenance tasks.
- FIG. 1 is a simplified block diagram of a manufacturing system in accordance with one illustrative embodiment of the present invention.
- FIG. 2 is a simplified flow diagram of a method for scheduling preventative maintenance tasks in accordance with another embodiment of the present invention.
- the software implemented aspects of the invention are typically encoded on some form of program storage medium or implemented over some type of transmission medium.
- the program storage medium may be magnetic (e.g., a floppy disk or a hard drive) or optical (e.g., a compact disk read only memory, or CDROM), and may be read only or random access.
- the transmission medium may be twisted wire pairs, coaxial cable, optical fiber, wireless or some other suitable transmission medium known to the art. The invention is not limited by these aspects of any given implementation.
- the manufacturing system 10 includes a network 20 , a plurality of machines 30 - 80 , a manufacturing execution system (MES) server 90 , a database server 100 and its associated data store 110 , a workflow server 115 , and a preventative maintenance scheduling unit 120 executing on a workstation 130 .
- MES manufacturing execution system
- the manufacturing system 10 is adapted to fabricate semiconductor devices.
- the invention is described as it may be implemented in a semiconductor fabrication facility, the invention is not so limited and may be applied to other manufacturing environments.
- the techniques described herein may be applied to a variety of workpieces or manufactured items, including, but not limited to, microprocessors, memory devices, digital signal processors, application specific integrated circuits (ASICs), or other devices.
- the techniques may also be applied to workpieces or manufactured items other than semiconductor devices.
- the network 20 interconnects various components of the manufacturing system 10 , allowing them to exchange information.
- Each of the machines 30 - 80 may be coupled to a computer (not shown) for interfacing with the network 20 .
- the machines 30 - 80 are grouped into sets of like machines, commonly referred to as machine families, as denoted by lettered suffixes.
- the set of machines 30 A- 30 C represent tools of a certain type, such as chemical mechanical planarization (CMP) machines.
- CMP chemical mechanical planarization
- a particular wafer or lot of wafers progresses through the machines 30 - 80 as it is being manufactured, with each machine 30 - 80 performing a specific function in the process flow.
- Exemplary processing tools for a semiconductor device fabrication environment include metrology tools, photolithography steppers, etch tools, deposition tools, polishing tools, rapid thermal processing tools, implantation tools, etc.
- the machines 30 - 80 are illustrated in a rank and file grouping for illustrative purposes only. In an actual implementation, the machines 30 - 80 may be arranged in any physical order or grouping. Additionally, the connections between the tools in a particular grouping are meant to represent connections to the network 20 , rather than interconnections between the machines 30 - 80 .
- the manufacturing execution system (MES) server 90 directs the high level operation of the manufacturing system 10 .
- the MES server 90 monitors the status of the various entities in the manufacturing system 10 (i.e., lots, machines 30 - 80 )
- the database server 100 stores data related to the status of the various entities and articles of manufacture in the process flow using one or more data stores 110 .
- the data may include pre-process and post-process metrology data, machine states, lot priorities, etc.
- the MES server 90 stores information in the data store 110 related to the particular machines 30 - 80 (i.e., or sensors (not shown) associated with the machines 30 - 80 ) used to process each lot of wafers.
- the metrology data may include feature measurements, process layer thicknesses, electrical performance, surface profiles, etc.
- Data stored for the machines 30 - 80 may include chamber pressure, chamber temperature, anneal time, implant dose, implant energy, plasma energy, processing time, etc.
- Data associated with the operating recipe settings used by the machine 30 - 80 during the fabrication process may also be stored in the data store 110 . For example, it may not be possible to measure direct values for some process parameters. These settings may be determined from the operating recipe in lieu of actual process data from the machine 30 - 80 .
- the workflow server 115 controls the flow of articles of manufacture (e.g., lots of semiconductor wafers) through the process flow, deciding the processing order, which articles are to be sampled by metrology machines 30 - 80 , etc. Hence, the workflow server 115 controls the queues for the processing and metrology resources in the manufacturing system 10 .
- the workflow server 115 can use various workflow management techniques, including dispatching, reservation management, etc., to control the flow of articles.
- the distribution of the processing and data storage functions amongst the different computers 90 , 100 , 115 , 130 is generally conducted to provide independence and a central information store. Of course, different numbers of computers and different arrangements may be used. Moreover, the functions of some units may be combined. For example, the workflow server 115 and the preventative maintenance scheduling unit 120 may be combined into a single unit.
- the workflow server 115 organizes the manufacturing system 10 according to loops.
- a loop is defined by the plurality of processes performed on a particular layer of a wafer starting with a photolithography patterning step and terminating prior to the next photolithography step.
- Production targets referred to as loop counts, are defined for each loop.
- One loop count reflects one wafer being processed in the loop.
- Machines in a particular family may be assigned to a particular loop or may be allocated across multiple loops. Hence, for a given time period (e.g., shift, day, or week), each loop is assigned a quota that is expected to be completed. Loop counts not completed in a given shift are added to the quota for the subsequent shift.
- the preventative maintenance scheduling unit 120 generates preventative maintenance schedules and provides such schedules to the workflow server 115 and/or fabrication personnel to implement the PM tasks in accordance with the schedule.
- the preventative maintenance scheduling unit 120 determines a preventative maintenance schedule that seeks to minimize the effects on production level targets (i.e., loop counts).
- the preventative maintenance scheduling unit 120 performs a two-phase optimization first on a global level, and second on a local machine family level to determine the optimal times for performing the PM procedures while minimizing the impact on the production flow.
- loop counts are enforced to keep a steady and balanced production flow. If loop counts are not achieved due to a low WIP level, the remaining loop counts are carried over to next time period and the time to recover from the missing loop counts should be minimized.
- the preventative maintenance scheduling unit 120 attempts to schedule in a way that machines still have enough capacity to achieve the loop counts, but also maintain a steady WIP level and low maintenance costs.
- the preventative maintenance scheduling unit 120 pre-allocates the machine capacities required to achieve the targeted loop counts and attempts to assign PM tasks based on the capacities that are affordable to move within the warning window or even lose.
- the preventative maintenance scheduling unit 120 may employ an objective function that seeks to assign PM tasks as late as possible.
- the preventative maintenance scheduling unit 120 employs a system of equations that may be solved using mixed integer linear programming techniques.
- solutions are driven by a plurality of objectives.
- Constraints are defined that serve as conditions to narrow down the solution scope.
- a linear (either integer or non-integer) solution can be identified within the solution scope.
- the OSL solver offered by IBM Corporation is a commercially available software tool that may be used.
- the following notation list provided in Table 1 identifies symbols used in the following objective and constraint equations.
- the objective function employed by the preventative maintenance scheduling unit 120 for the global optimization is:
- This objective function seeks to assign the PM as late as possible.
- X indicates the PM assignment. If a PM task is assigned to a time slot t, X(i, t) will be one.
- the preference specified in Equation 1 is to perform the PM task as late as possible, as long as it is still within the warning window. This maximization allows potential reduction in the number of PM tasks required every year, resulting in a reduction in PM costs. Maximizing tX i,t , assigns the latest possible slot for allocating the PM tasks.
- the following constraint provides the minimum machine capacity required to ensure the loop counts can be completed.
- the preventative maintenance scheduling unit 120 attempts to leave enough capacity based on the required loop counts and determines how to best utilize the machine idle time for maintenance.
- the next constraint attempts to ensure that the total percentage of capacity allocated to a machine, whether in production, setup, or unavailable time, should be less than one.
- the concept encompassed by this constraint is that the maximum machine unavailable time, whether due to a PM task or down time, should be no more than the remaining percentages excluding production and setup. In other words, a PM task should not be scheduled if the target unavailable percentage is less than the required capacity that can be sacrificed by assigning the PM task.
- Another constraint related to a similar concept specifies that the total capacity lost due to the PM task should be less than the total unavailable capacity, which helps ensure that the loop counts will not be affected regardless of how the PM tasks are scheduled.
- the availability of maintenance technicians may be a constraint. This situation may arise when an internal technician cannot perform the PM task and an outside vendor is used instead to maintain the machine. Hence, labor can be a bottleneck limiting the potential number of PM tasks that may be performed simultaneously.
- the following constraint relates to ensuring that all PM tasks allocated should have sufficient technician support.
- the following constraint requires that all PM tasks are assigned before the end of the warning window. Hence, a PM task will not be assigned to any time after the warning window. A PM task may be assigned before the start of the warning window, but not after. A PM task can be done at any time as long as it is before the expiration of the specified window. However, as managed by the objective function of Equation 1, performing a doing PM earlier is not preferred.
- X i,t 0 ⁇ i ⁇ , t ⁇ ,t> ⁇ i ⁇ (7)
- the first step of the optimization described above allocates the PM tasks to time periods to ensure the execution of loop counts. After this initial global optimization, it does not matter when within the time period the PM task is actually performed with respect to the impact on loop counts.
- the preventative maintenance scheduling unit 120 performs a second optimization to determine when a particular PM task should be dispatched and executed by the technicians within the assigned global time period. Table 2 below specifies a notation list that identifies symbols used in the following objective and constraint equations for the local PM optimization.
- the objective function employed by the preventative maintenance scheduling unit 120 for the global optimization is: Minimize ⁇ MAX (8)
- a WIP limit is a target used to balance the manufacturing line.
- the WIP at certain operations is limited to prevent a bubble that could eventually generate a big disruption as it moves on through the line.
- the following constraint attempts to allocate the PM tasks to keep the WIP within the limit. ⁇ t ⁇ W LIM ⁇ t ⁇ O j (9)
- the overall machine family availability is based on the availability of each machine in the family as indicated by the following equation.
- An objective of the optimization is to minimize the occurrences of WIP bubbles (i.e., more WIP than capacity). This objective may be interpreted as minimizing the maximum excess WIP ⁇ MAX ⁇ t ⁇ t ⁇ O j (12)
- the preventative maintenance scheduling unit 120 also considers the total repair time necessary to complete a PM task in r i units. Hence, the total number of tasks allocated to time unit t should be the same as r i .
- the local model also considers a situation when multiple PM tasks are assigned to the same equipment.
- the preventative maintenance scheduling unit 120 may attempt to consolidate these PM tasks together to reduce the possible machine shut-down time.
- the preventative maintenance scheduling unit 120 also balances the PM tasks across multiple machines in a particular machine family to provide available capacity for the machine family that is steady throughout the time period.
- a simplified block diagram of a method for scheduling preventative maintenance tasks in accordance with an illustrative embodiment of the present invention is provided.
- a set of global time periods is defined.
- members of a set of preventative maintenance tasks associated with a plurality of machines are scheduled for execution during the global time periods based on capacities of the machines and production targets for the machines.
- a plurality of time slots is defined for a selected global period having a selected preventative maintenance task scheduled for execution therein.
- a selected time slot from the plurality of time slots is scheduled for performing the selected preventative maintenance task based on work in process levels for with the associated machine over the time slots.
- Optimizing the PM scheduling from both a global production capacity standpoint, as well as a local machine availability standpoint reduces the impacts of preventative maintenance on the manufacturing system. Moreover, the interval between preventative maintenance procedures may be maximized resulting in decreased maintenance expenses and throughput advantages. These advantages increase the efficiency, and as a result, the profitability of the manufacturing system.
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Abstract
Description
| TABLE 1 |
| Notation for Global PM Optimization |
| Set: | |
| M | Set of machine families |
| ψ | Set of time periods (e.g., shift, day, or week) |
| ψc | A continuous set of ψ |
| Ω | Set of PM tasks including all PM tasks of all machines in the |
| planning periods | |
| D | Set of devices |
| φd | Set of loops of device d ε D |
| Parameters |
| μd,l,m | Unit processing time at machine family m ε M of wafers of |
| device d ε D at loop l ε φd | |
| Td,l,t | Target loop count of device d ε D at loop l ε φd at period t ε ψ |
| Sm,t | Percentage of capacity of machine family m ε M at period t ε ψ |
| used for setups | |
| λi,m | =1 if PM task i ε Ω is for machine family m ε M, = 0 otherwise |
| Nm | Number of machines in machine family m ε M |
| ri | Mean Time To Repair (MTTR) of PM task i ε Ω |
| ηt | Capacity of labor at time period t ε ψ |
| θi | Starting time of the warning window of PM task i ε Ω. θi ε ψc |
| δi | Ending time of the warning window of PM task i ε Ω. δi ε ψc |
| ci | Time penalty cost of doing PM i ε Ω outside the warning window |
| Variables |
| Pd,l,m,t | Percentage of capacity of machine family m ε M at period |
| t ε ψ used for manufacturing wafers of device d ε D at | |
| loop l ε φd | |
| Um,t | Percentage of capacity of machine family m ε M at period |
| t ε ψ unavailable including PM/Qual/Down/Idle | |
| Xi,t | Binary decision variables. =1 if PM task i ε Ω is assigned |
| to time period t ε ψ, =0 otherwise | |
Xi,t=0 ∀iεΩ, tεΨ,t>┌δi┐ (7)
| TABLE 2 |
| Notation for Local PM Optimization |
| Set: | |
| Oj | Set of time slots in period j ε ψ |
| Mm | Set of machines of machine family m ε M |
| Ωm | Subset of PM tasks of machine family m ε M |
| Parameters |
| WLIM | WIP limit |
| Wo | WIP level that can be handled by the machine family with full |
| capacity | |
| Wt | Predicted WIP level at time slot t ε Oj |
| ζi,k | =1 if PM tasks i ε Ωm is for machine k ε Mm |
| Variables |
| σt | Number of wafers that are beyond the capacity limit of the |
| machine family at time slot t ε Oj | |
| at | Availability of machine family at time slot t ε Oj, 0 ≦ at ≦ 1 |
| at k | Availability of machine k ε Mm at time slot t ε Oj, 0 ≦ at k ≦ 1 |
| (e.g., calculated by querying a look-up table) | |
| τi,MAX | Completion time of PM task i ε Ωm. τi,MAX ε Oj |
| τi,MIN | Completion time of PM task i ε Ωm. τi,MIN ε Oj |
| Yi,t | Binary decision variable. =1 if PM task i ε Ωm is scheduled |
| at time slot t ε Oj | |
| σMAX | Maximum σt |
Minimize σMAX (8)
σt≦WLIM ∀tεOj (9)
σt=σt−1 +W t −a t W 0 ∀tεO j,σ0=0 (10)
σMAX≧σt ∀tεOj (12)
τi,MAX ≧t−(1−Y i,t)M ∀iεΩ m ,X i,j,m=1 (14)
τi,MIN ≦t−(Y i,t−1)M ∀iεΩ m ,X i,j,m=1 (15)
τi,MAX−τi,MIN ≦r i ∀iεΩm ,X i,j,m=1 (16)
a t k =f(X itζik) (17)
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| US20100280872A1 (en) * | 2009-08-27 | 2010-11-04 | Scholte-Wassink Hartmut | Methods and systems for monitoring and scheduling operations and maintenance activities |
| US20110096313A1 (en) * | 2009-10-26 | 2011-04-28 | International Business Machines Corporation | Constrained Optimization Of Lithographic Source Intensities Under Contingent Requirements |
| US20110137697A1 (en) * | 2009-11-02 | 2011-06-09 | Manjunath Yedatore | Automated corrective and predictive maintenance system |
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| US20130178971A1 (en) * | 2011-03-16 | 2013-07-11 | Koji Hashimoto | Substrate processing apparatus and power source management method |
| US20150339618A1 (en) * | 2014-05-23 | 2015-11-26 | International Business Machines Corporation | Failure impact manager |
| CN109804392A (en) * | 2016-08-22 | 2019-05-24 | 埃森哲环球解决方案有限公司 | Service network maintenance analysis and control |
| EP3557497A1 (en) * | 2018-04-19 | 2019-10-23 | Siemens Aktiengesellschaft | Integrated calibration, maintenance and qualification management system |
| CN113723803A (en) * | 2021-08-30 | 2021-11-30 | 东北大学秦皇岛分校 | Parallel machine system processing optimization method combining maintenance strategy and task scheduling |
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| CN109804392A (en) * | 2016-08-22 | 2019-05-24 | 埃森哲环球解决方案有限公司 | Service network maintenance analysis and control |
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| EP3557497A1 (en) * | 2018-04-19 | 2019-10-23 | Siemens Aktiengesellschaft | Integrated calibration, maintenance and qualification management system |
| CN113723803A (en) * | 2021-08-30 | 2021-11-30 | 东北大学秦皇岛分校 | Parallel machine system processing optimization method combining maintenance strategy and task scheduling |
| CN113723803B (en) * | 2021-08-30 | 2023-10-31 | 东北大学秦皇岛分校 | Parallel machine system processing optimization method based on joint maintenance strategy and task scheduling |
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